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Open AccessJournal ArticleDOI

Representational Similarity Analysis – Connecting the Branches of Systems Neuroscience

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TLDR
A new experimental and data-analytical framework called representational similarity analysis (RSA) is proposed, in which multi-channel measures of neural activity are quantitatively related to each other and to computational theory and behavior by comparing RDMs.
Abstract
A fundamental challenge for systems neuroscience is to quantitatively relate its three major branches of research: brain-activity measurement, behavioral measurement, and computational modeling. Using measured brain-activity patterns to evaluate computational network models is complicated by the need to define the correspondency between the units of the model and the channels of the brain-activity data, e.g. single-cell recordings or voxels from functional magnetic resonance imaging (fMRI). Similar correspondency problems complicate relating activity patterns between different modalities of brain-activity measurement, and between subjects and species. In order to bridge these divides, we suggest abstracting from the activity patterns themselves and computing representational dissimilarity matrices, which characterize the information carried by a given representation in a brain or model. We propose a new experimental and data-analytical framework called representational similarity analysis (RSA), in which multi-channel measures of neural activity are quantitatively related to each other and to computational theory and behavior by comparing representational dissimilarity matrices. We demonstrate RSA by relating representations of visual objects as measured with fMRI to computational models spanning a wide range of complexities. We argue that these ideas, which have deep roots in psychology and neuroscience, will allow the integrated quantitative analysis of data from all three branches, thus contributing to a more unified systems neuroscience.

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Citations
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Hearing Scenes: A Neuromagnetic Signature of Auditory Source and Reverberant Space Separation.

TL;DR: Separable neural signatures of auditory space and source perception during magnetoencephalography recording are reported as subjects listened to brief sounds convolved with monaural room impulse responses and reveal the temporal dynamics of how auditory scene analysis extracts percepts from complex naturalistic auditory signals.
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Localization and Functional Characterization of an Occipital Visual Word form Sensitive Area.

TL;DR: Results indicate that the OWA, together with the VWFA, are critical parts of the network for processing and representing the category information for word.
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Functional Specificity and Sex Differences in the Neural Circuits Supporting the Inhibition of Automatic Imitation.

TL;DR: Neurocognitive models of imitation require revision to reflect that the inhibition of imitation relies to a greater extent on a domain-general selection system rather than adomain-specific system that supports social cognition.
Book ChapterDOI

Multi-voxel Pattern Analysis

TL;DR: This work introduces the motivation and foundations of MVPA, explains how pattern analysis algorithms can be used for the analysis of neuroimaging data, and outlines the mathematical background of the most important methods: linear discriminant analysis, logistic regression, support vector machine, and Mahalanobis distance.
Journal ArticleDOI

Neural Differentiation is Moderated by Age in Scene-Selective, But Not Face-Selective, Cortical Regions.

TL;DR: Findings extend prior findings suggesting that age-related neural dedifferentiation is not a ubiquitous phenomenon, and that the specificity of neural responses to scenes is predictive of subsequent memory performance independently of age.
References
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Journal ArticleDOI

Nonlinear dimensionality reduction by locally linear embedding.

TL;DR: Locally linear embedding (LLE) is introduced, an unsupervised learning algorithm that computes low-dimensional, neighborhood-preserving embeddings of high-dimensional inputs that learns the global structure of nonlinear manifolds.
Journal ArticleDOI

A global geometric framework for nonlinear dimensionality reduction.

TL;DR: An approach to solving dimensionality reduction problems that uses easily measured local metric information to learn the underlying global geometry of a data set and efficiently computes a globally optimal solution, and is guaranteed to converge asymptotically to the true structure.
Journal ArticleDOI

Statistical parametric maps in functional imaging: A general linear approach

TL;DR: In this paper, the authors present a general approach that accommodates most forms of experimental layout and ensuing analysis (designed experiments with fixed effects for factors, covariates and interaction of factors).
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